Causal inference with misspecified exposure mappings

03/11/2021
by   Fredrik Sävje, et al.
0

Exposure mappings facilitate investigations of complex causal effects when units interact in experiments. Current methods assume that the exposures are correctly specified, but such an assumption cannot be verified, and its validity is often questionable. This paper describes conditions under which one can draw inferences about exposure effects when the exposures are misspecified. The main result is a proof of consistency under mild conditions on the errors introduced by the misspecification. The rate of convergence is determined by the dependence between units' specification errors, and consistency is achieved even if the errors are large as long as they are sufficiently weakly dependent. In other words, exposure effects can be precisely estimated also under misspecification as long as the units' exposures are not misspecified in the same way. The limiting distribution of the estimator is discussed. Asymptotic normality is achieved under stronger conditions than those needed for consistency. Similar conditions also facilitate conservative variance estimation.

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